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A Feature Selection Approach to Visual Domain Adaptation in Classification

机译:分类中的视域适应功能选择方法

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In machine learning, we presume datasets to be labeled while performing any operation. But, is it true in real-life scenarios? To its contrary, we have an enormous amount of unlabeled datasets available in the form of images, videos, audios, articles, and many more. The major challenge we face is to train our classification model with primitive machine learning algorithms because these algorithms only expect labeled data. To overcome these limitations visual domain adaptation algorithms such as MEDA (Manifold Embedded Distribution Alignment) have been introduced. The main motto of MEDA is to minimize the distribution difference between the source domain (an application that contains enough labeled data) and the target domain (an application that contains only unlabeled data). In this way, the source domain labeled data can be utilized to enhance the performance of the target domain classifier. Though MEDA (Manifold Embedded Distribution Alignment) approach shows remarkable improvement in classification accuracy, but still there is considerable scope of improvement. There are plenty of irrelevant features in both domains. These irrelevant features create a hole for this algorithm and prevent the target domain classifier from becoming more robust. Therefore, for the purpose of filling this hole, we propose a new feature selection based visual domain adaptation (FSVDA) method which uses particle swarm optimization (PSO), where the MEDA method is considered as a fitness function that leads to automatically select a good subset of features over both the domains. Extensive experimental results on two real-world domain adaptation (DA) data sets such as object recognition and digit recognition demonstrate that our proposed method outperforms state-of-the-art primitive and domain DA algorithms. It is a big challenge to train the classifier for a new unlabeled image dataset in image classification and computer vision. The two magnificent solutions to this challenge are transfer learning and domain adaptation. By transfer learning, we can use our knowledge from previously trained models for training newer models.
机译:在机器学习中,我们假设要在执行任何操作时要标记的数据集。但是,在现实生活场景中是真的吗?依靠它,我们拥有巨大的未标记数据集,以图像,视频,大教堂,文章等形式提供。我们面临的主要挑战是使用原始机器学习算法培训我们的分类模型,因为这些算法仅期望标记为数据。为了克服这些限制,已经介绍了视觉域适应算法,例如MEDA(歧管嵌入式分布对准)。 Meda的主要座右铭是最小化源域(包含足够标记数据)和目标域的应用程序之间的分布差异(仅包含未标记数据的应用程序)。以这种方式,可以利用标记数据来增强目标域分类器的性能。虽然MEDA(歧管嵌入式分配对准)方法显示出显着的分类准确性,但仍然存在相当大的改进范围。两个域都有很多无关紧要的功能。这些无关的功能为该算法创建一个孔,并防止目标域分类器变得更加强大。因此,为了填充该孔,我们提出了一种新的特征选择基于特征选择的可视域适应(FSVDA)方法,它使用粒子群优化(PSO),其中MEDA方法被认为是一种适合函数,导致自动选择好的功能两个域上的特征子集。对对象识别和数字识别之类的两个实际域适应(DA)数据集的广泛实验结果表明我们所提出的方法优于最先进的原始和域DA算法。在图像分类和计算机视觉中训练用于新的未标记图像数据集的分类器是一个很大的挑战。这项挑战的两个宏伟的解决方案是转移学习和域适应。通过转移学习,我们可以使用我们的知识从预先培训的模型中培训较新型号。

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